The ID Service stores metrics data to an InfluxDB service with a default retention policy of 24 hours. This may not be long enough time for your use cases. This document will show with examples how to store metrics data for a longer period of time, and how to configure Grafana to display it.
The theory
To store measurements for a longer time, it must be stored with a Retention Policy of desired length. It doesn’t make sense to store ALL data for the specified time: When Grafana shows values from a month in a graph, it physically cannot display data at 50 millisecond accuracy. Having a lot of data at very short intervals takes a lot of processing, bandwidth and disk space. So you must think about downsampling the data as well.
Downsampling and retaining data is done with two tools:
Continuous Query (CQ) - an automatically, periodically run query which collects and downsamples data
Retention Policy (RP) - Definition of how long the data is kept
InfluxDB 1.8 documentation
Using already existing data
The ID service may have already added Continuous Queries and Retention Policies that meet your needs. Check the existing queries with the influx
prompt:
> use oneportal Using database oneportal > show continuous queries name: _internal name query ---- ----- name: oneportal name query ---- ----- openid_api_requests_hourly CREATE CONTINUOUS QUERY openid_api_requests_hourly ON oneportal BEGIN SELECT count(auth_header_exists) INTO oneportal.one_year.openid_api_requests_hourly FROM oneportal.one_day.openid_api_request GROUP BY time(1h), path, method END openid_api_requests_daily CREATE CONTINUOUS QUERY openid_api_requests_daily ON oneportal BEGIN SELECT sum(count) INTO oneportal.five_years.openid_api_requests_daily FROM oneportal.one_year.openid_api_requests_hourly GROUP BY time(1d), path, method END mgmt_api_requests_hourly CREATE CONTINUOUS QUERY mgmt_api_requests_hourly ON oneportal BEGIN SELECT count(auth_header_exists) INTO oneportal.one_year.mgmt_api_requests_hourly FROM oneportal.one_day.mgmt_api_request GROUP BY time(1h), path, method, api_client_id, oauth2_client_id END mgmt_api_requests_daily CREATE CONTINUOUS QUERY mgmt_api_requests_daily ON oneportal BEGIN SELECT sum(count) INTO oneportal.five_years.mgmt_api_requests_daily FROM oneportal.one_year.mgmt_api_requests_hourly GROUP BY time(1d), path, method, api_client_id, oauth2_client_id END log_entry_hourly CREATE CONTINUOUS QUERY log_entry_hourly ON oneportal BEGIN SELECT count(event_id) INTO oneportal.one_year.log_entry_hourly FROM oneportal.one_day.log_entry GROUP BY time(1h), target_namespace_id, target_type, source, log_level, log_life END log_entry_daily CREATE CONTINUOUS QUERY log_entry_daily ON oneportal BEGIN SELECT sum(count) INTO oneportal.five_years.log_entry_daily FROM oneportal.one_year.log_entry_hourly GROUP BY time(1d), target_namespace_id, target_type, source, log_level, log_life END filterable_service_find_max_results_hourly CREATE CONTINUOUS QUERY filterable_service_find_max_results_hourly ON oneportal BEGIN SELECT max(results) INTO oneportal.one_year.filterable_service_find_max_results_hourly FROM oneportal.one_day.filterable_service_find GROUP BY time(1h), service_class END filterable_service_find_count_queries_hourly CREATE CONTINUOUS QUERY filterable_service_find_count_queries_hourly ON oneportal BEGIN SELECT count(results) INTO oneportal.one_year.filterable_service_find_count_queries_hourly FROM oneportal.one_day.filterable_service_find GROUP BY time(1h), service_class END name: ruuvitag name query ---- -----
Above we see from the first result that there exists a query called openid_api_requests_hourly
which collects a field called count
which is a sum of auth_header_exists
values (e.g. a count of requests), grouped with 1 hour accuracy for each path and method combination. It is available in the one_year
retention policy with name openid_api_requests_hourly
.
This existing continuous query data can be used in Grafana with the following configuration:
Creating a new RP and CQ
Let’s suppose there isn’t a CQ and RP that meet our requirements.
Requirements
We need to have a Grafana display which shows Management API request counts by path, and we need to show data for the last 30 days. We need to be able to display data for quite a short interval, so let’s pick an interval of 5 minutes.
In summary:
We need to store metrics data about Management API requests
For 30 days
With 5 minute interval accuracy
This means we will have 30 * 24 * (60/5) = 8640 measurements per any stored tag combination. This is a reasonable amount of data to process.
What we already have
We can show a graph for the last 24 hours with the following Grafana Panel configuration:
The essential info we see from this configuration is:
Data is stored with the default retention policy (which we know is
one_day
by using theshow retention policies
command) with measurement namemgmg_api_request
.There’s a field or tag called
auth_header_exists
, and in this graph we display the number of them by using thecount()
function.We group by time and also the tag
path
.The
path
tag is also used as an alias, the value of which is shown in the legend.
Create a Retention Policy
We need a retention policy that is at least 30 days long. Let’s see what is available:
> show retention policies name duration shardGroupDuration replicaN default ---- -------- ------------------ -------- ------- autogen 0s 168h0m0s 1 false five_years 43680h0m0s 168h0m0s 1 false one_day 24h0m0s 1h0m0s 1 true one_year 8736h0m0s 168h0m0s 1 false
We see that one_day
is indeed the default, and the next longest is one_year
. Since that is too long, we should create a new RP called one_month
that has a duration of 30 days, or 720 hours.
> CREATE RETENTION POLICY "one_month" ON "oneportal" DURATION 720h REPLICATION 1
Now we can confirm that it was added.
> show retention policies name duration shardGroupDuration replicaN default ---- -------- ------------------ -------- ------- autogen 0s 168h0m0s 1 false five_years 43680h0m0s 168h0m0s 1 false one_day 24h0m0s 1h0m0s 1 true one_year 8736h0m0s 168h0m0s 1 false one_month 720h0m0s 24h0m0s 1 false
Create a Continuous Query
Let’s create a CQ that collects everything usable from default mgmt_api_request
data. We can find the tag and field names with commands like SELECT * FROM mgmt_api_request LIMIT 1
.
> CREATE CONTINUOUS QUERY "mgmt_api_requests_5min_for_1month" ON "oneportal" BEGIN SELECT count(auth_header_exists) AS "count_requests", sum("request_duration") AS "sum_request_duration", mean("request_duration") AS "mean_request_duration" INTO "one_month"."mgmt_api_requests" FROM "mgmt_api_request" GROUP BY time(5m), "path", "method", "api_client_id", "oauth2_client_id" END
We could have created a CQ that collects only the number of requests and groups them by path, but in anticipation of other needs, we collect more data and more tags.
Note:
The data will be stored with RP
one_month
and namemgmt_api_requests
It will have the following values:
count_requests
: The number of requests made during 5 minutes. This is needed in our example.sum_request_duration
: A sum of the duration of request processing during 5 minutes. This can be used to display which requests are slowest to process and might be the causes of performance problems.mean_request_duration
: The mean duration of request processing during 5 minutes. This can be used to display how long requests take on average.Tags
path
,method
,api_client_id
andoauth2_client_id
. Of thesepath
is needed for our example, others can be used in other graphs.
The fields
response_code
,request_uri
apparently cannot be used for grouping in a CQ, so they are not included.
Test the Continuous Query
Make a few Management API calls to add data.
curl -X GET "https://your-id-server.com/api/rest/v1/version"
Wait 5 minutes for the CQ to run. Then run the query:
> SELECT * FROM one_month.mgmt_api_requests name: mgmt_api_requests time api_client_id count_requests mean_request_duration method path sum_request_duration ---- ------------- -------------- --------------------- ------ ---- -------------------- 1608640500000000000 1248769513590337 1 14 GET user/{userId}/customfields 14 1608640500000000000 1248769513590337 2 48.5 POST user/{userId}/customfields 97 1608640500000000000 5 2 GET example 10 1608641100000000000 6 1.8333333333333333 GET version 11
We see that 6 such requests were made, with an average processing time of 1.83 ms.
Update the Grafana panel
Make a duplicate of the original panel as a backup. Update the panel query configuration:
In FROM use the
one_month
RP and themgmt_api_requests
name,change the SELECT parameters to use field
count_requests
and the function tosum()
since we now need to add the counts up.
The equivalent query is: SELECT sum("count_requests") FROM "one_month"."mgmt_api_requests" WHERE $timeFilter GROUP BY time($__interval), "path" fill(0)
.
The graph now shows the expected correct values. You should change the Min interval to 5m
to match the CQ, and to visualise that the data covers a 5 minute period.
More CQ examples
Number of Management API requests that ended if error code (>= 400):
CREATE CONTINUOUS QUERY mgmt_api_request_errors_5min_for_1month ON oneportal BEGIN SELECT count(auth_header_exists) AS count_requests INTO oneportal.one_month.mgmt_api_request_errors FROM oneportal.one_day.mgmt_api_request WHERE response_code >= 400 GROUP BY time(5m), api_client_id, oauth2_client_id, path END
Number of Management API requests that ended in successful code (200 to 399):
CREATE CONTINUOUS QUERY mgmt_api_request_successes_5min_for_1month ON oneportal BEGIN SELECT count(auth_header_exists) AS count_requests INTO oneportal.one_month.mgmt_api_request_successes FROM oneportal.one_day.mgmt_api_request WHERE response_code >= 200 AND response_code < 400 GROUP BY time(5m), api_client_id, oauth2_client_id, path END